User perceptions and utilisation of features of an AI-enabled workplace digital mental wellness platform 'mindline at work'.

IF 4.1 Q1 HEALTH CARE SCIENCES & SERVICES BMJ Health & Care Informatics Pub Date : 2024-08-17 DOI:10.1136/bmjhci-2024-101045
Sungwon Yoon, Hendra Goh, Xinyi Casuarine Low, Janice Huiqin Weng, Creighton Heaukulani
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Abstract

Background: The working population encounters unique work-related stressors. Despite these challenges, accessibility to mental healthcare remains limited. Digital technology-enabled mental wellness tools can offer much-needed access to mental healthcare. However, existing literature has given limited attention to their relevance and user engagement, particularly for the working population.

Aim: This study aims to assess user perceptions and feature utilisation of mindline at work, a nationally developed AI-enabled digital platform designed to improve mental wellness in the working population.

Methods: This study adopted a mixed-methods design comprising a survey (n=399) and semistructured interviews (n=40) with office-based working adults. Participants were asked to use mindline at work for 4 weeks. We collected data about utilisation of the platform features, intention for sustained use and perceptions of specific features.

Results: Participants under 5 years of work experience reported lower utilisation of multimedia resources but higher utilisation of emotion self-assessment tools and the AI chatbot compared with their counterparts (p<0.001). The platform received a moderate level of satisfaction (57%) and positive intention for sustained use (58%). Participants regarded mindline at work as an 'essential' safeguard against workplace stress, valuing its secure and non-judgmental space and user anonymity. However, they wanted greater institutional support for office workers' mental wellness to enhance the uptake. The AI chatbot was perceived as useful for self-reflection and problem-solving, despite limited maturity.

Conclusion: Identifying the unique benefits of specific features for different segments of working adults can foster a personalised user experience and promote mental well-being. Increasing workplace awareness is essential for platform adoption.

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用户对人工智能工作场所数字心理健康平台 "mindline at work "功能的看法和使用情况。
背景:职业人群会遇到与工作相关的独特压力。尽管存在这些挑战,但获得心理保健的机会仍然有限。借助数字技术的心理健康工具可以提供亟需的心理保健服务。目的:本研究旨在评估用户对 "工作中的心灵热线"(mindline at work)的看法和使用情况,这是一个由国家开发的人工智能数字平台,旨在改善工作人群的心理健康:本研究采用混合方法设计,包括对办公室工作的成年人进行问卷调查(n=399)和半结构式访谈(n=40)。参与者被要求在工作中使用心灵热线 4 周。我们收集了有关平台功能的使用情况、持续使用的意向以及对特定功能的看法等数据:工作经验在 5 年以下的参与者对多媒体资源的使用率较低,但对情绪自我评估工具和人工智能聊天机器人的使用率较高,而工作经验在 5 年以上的参与者对多媒体资源的使用率较低,但对情绪自我评估工具和人工智能聊天机器人的使用率较高。不过,他们希望得到更多机构对上班族心理健康的支持,以提高使用率。尽管人工智能聊天机器人的成熟度有限,但他们认为它有助于自我反思和解决问题:针对不同的上班族群体,确定特定功能的独特益处,可以促进个性化的用户体验,提高心理健康水平。提高工作场所的认识对于平台的采用至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.10
自引率
4.90%
发文量
40
审稿时长
18 weeks
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